Effective Anomaly Space for Hyperspectral Anomaly Detection

2022 
Due to unavailability of prior knowledge about anomalies, background suppression (BS) is a crucial factor in anomaly detection (AD) evaluation. The difficulty in dealing with BS arises from the fact that anomalies are generally sandwiched between background (BKG) and noise. This article presents a new concept, called effective anomaly space (EAS), to resolve this dilemma. To accomplish this goal, the well-known independent component analysis (ICA) is used to address between BKG and anomalies issue by removing the first two orders of data statistics (2OS), while sparsity cardinality (SC) is used to address between anomalies and noise issue by removing non-Gaussian noises and interferers from anomalies. Specifically, SC is rederived as fixed SC (FSC) corresponding to fixed length coding for a spectral vector and a spatial band and variable SC (VSC) for a corresponding to variable length coding for a spectral–spatial sample and spatial–spectral band from an information theory point of view. Combining ICA and the new derived SC versions allows EAS not only to remove BKG-characterized by 2OS including Gaussian-distributed signal sources but also to remove non-Gaussian noises/interferers from anomalies. As a consequence, EAS can significantly increase anomaly detectability. In particular, one of great benefits resulting from EAS is that EAS can also improve current low-rank and sparse representation (LRaSR)-based methods used for AD.
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